Substation Object Detection Based on Enhance RCNN Model

N. Yao, Guangrui Shan, Xueqiong Zhu
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引用次数: 1

Abstract

In the object detection task of substation, the low resolution object would suffer from serious information loss problem, so some low resolution objects with potential security risks cannot be detected by object detection models such as Faster RCNN. We combine Faster RCNN model with Wasserstein GAN model, and propose Enhance RCNN model especially for the low resolution object detection in the substation. In our model, discriminator in GAN is used to distinguish the abstract feature difference between the high resolution object and the low resolution object after supplementing feature. And generator is used to supplement the abstract feature for low resolution object, so that its feature distribution is consistent with the feature distribution of high resolution object, thus improving the overall detection effect. The experimental results show that for the typical object in the substation such as person, bicycle and vehicle, Enhance RCNN model averagely improves mAP (Mean Average Precision) and IoU (Intersection-over-Union) by 7.79% and 6.57% respectively when is compared with the other models including Faster RCNN, Fast RCNN and SSD. For the low resolution object whose ratio of the object pixel to total image pixel less than 0.2%, Enhance RCNN model averagely improves mAP by 10.44%.
基于增强RCNN模型的变电站目标检测
在变电站的目标检测任务中,低分辨率的目标存在严重的信息丢失问题,一些具有安全隐患的低分辨率目标无法被Faster RCNN等目标检测模型检测到。将Faster RCNN模型与Wasserstein GAN模型相结合,提出了针对变电站低分辨率目标检测的enhanced RCNN模型。在我们的模型中,使用GAN中的鉴别器来区分补充特征后的高分辨率目标和低分辨率目标之间的抽象特征差异。并利用生成器对低分辨率目标的抽象特征进行补充,使其特征分布与高分辨率目标的特征分布一致,从而提高了整体检测效果。实验结果表明,对于变电站中人、自行车、车辆等典型对象,与Faster RCNN、Fast RCNN和SSD等模型相比,Enhance RCNN模型的mAP (Mean Average Precision)和IoU (Intersection-over-Union)分别平均提高了7.79%和6.57%。对于目标像素与图像总像素之比小于0.2%的低分辨率目标,Enhance RCNN模型平均将mAP提高10.44%。
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